

Unifl
Overview :
UniFL is a project designed to enhance the quality of generative models and accelerate inference speeds. It effectively addresses the existing issues of image quality, aesthetic appeal, and inference speed in current diffusion models through three key components: perceptual feedback learning, decoupled feedback learning, and adversarial feedback learning. Through experimental validation and user studies, UniFL has demonstrated significant performance improvements and strong generalization capabilities across multiple diffusion models.
Target Users :
Used to enhance the image generation quality and inference speed of diffusion models.
Use Cases
Improve the image generation effects of diffusion models using UniFL.
UniFL exhibits superior performance in experiments.
UniFL optimizes inference speed through adversarial feedback learning.
Features
Improve generative model quality
Accelerate inference speed
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